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Realistic Endoscopic Image Generation Method Using Virtual-to-real Image-domain Translation

2022-01-13 12:18:51
Masahiro Oda, Kiyohito Tanaka, Hirotsugu Takabatake, Masaki Mori, Hiroshi Natori, Kensaku Mori
     

Abstract

This paper proposes a realistic image generation method for visualization in endoscopic simulation systems. Endoscopic diagnosis and treatment are performed in many hospitals. To reduce complications related to endoscope insertions, endoscopic simulation systems are used for training or rehearsal of endoscope insertions. However, current simulation systems generate non-realistic virtual endoscopic images. To improve the value of the simulation systems, improvement of reality of their generated images is necessary. We propose a realistic image generation method for endoscopic simulation systems. Virtual endoscopic images are generated by using a volume rendering method from a CT volume of a patient. We improve the reality of the virtual endoscopic images using a virtual-to-real image-domain translation technique. The image-domain translator is implemented as a fully convolutional network (FCN). We train the FCN by minimizing a cycle consistency loss function. The FCN is trained using unpaired virtual and real endoscopic images. To obtain high quality image-domain translation results, we perform an image cleansing to the real endoscopic image set. We tested to use the shallow U-Net, U-Net, deep U-Net, and U-Net having residual units as the image-domain translator. The deep U-Net and U-Net having residual units generated quite realistic images.

Abstract (translated)

URL

https://arxiv.org/abs/2201.04918

PDF

https://arxiv.org/pdf/2201.04918.pdf


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